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A Fuzzy Complementary Criterion for structure learning of a neuro-fuzzy classifier

机译:神经模糊分类器结构学习的模糊互补判据

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In this paper, the use of a Fuzzy Complementary Criterion (FuzCoC) for structure learning of a neuro-fuzzy classifier arranged in layers is proposed. The FuzCoC has been recently proposed as an effective criterion for feature selection. Simulation results in a large number of benchmark problems revealed the capability of this method in selecting small subsets of powerful and complementary features even in high dimensional feature sets. In this paper, the FuzCoC method is used not only to reduce the dimensions of the original feature space, but also to identify complementary generic fuzzy neuron classifiers (FNCs) arranged in layers. The chosen generic classifiers are then combined using a decision fusion operator to construct a descendant FNC at the next layer with enhanced classification capabilities. The proposed structure learning algorithm is a modified version of the Group Method of Data Handling (GMDH) algorithm which incorporates the FuzCoC method simultaneous as a pre-feature selection method and as a method to identify complementary generic classifiers to be combined in the next layer. Simulation results demonstrate the capabilities of the proposed method in building accurate neuro-fuzzy classifiers with reduced computational demands.
机译:在本文中,提出了使用模糊互补准则(FuzCoC)来学习分层排列的神经模糊分类器的结构。 FuzCoC最近被提出作为特征选择的有效标准。大量基准测试问题的仿真结果表明,即使在高维特征集中,该方法也可以选择功能强大和互补特征的小子集。在本文中,FuzCoC方法不仅用于减少原始特征空间的维数,而且还用于识别分层排列的互补通用模糊神经元分类器(FNC)。然后,使用决策融合运算符组合选定的通用分类器,以在具有增强分类能力的下一层构造后代FNC。所提出的结构学习算法是数据处理组方法(GMDH)算法的改进版本,该方法同时包含FuzCoC方法作为特征选择方法和识别要在下一层进行组合的互补通用分类器的方法。仿真结果证明了该方法在构建具有减少的计算需求的准确的神经模糊分类器中的能力。

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